CRF learning with CNN features for hyperspectral image segmentation

Abstract

This paper proposes a method that uses both spectral and spatial information to segment remote sensing hyperspectral images. After a hyperspectral image is over-segmented into superpixels, a deep Convolutional Neural Network (CNN) is used to perform superpixel-level labelling. To further delineate objects from a hyperspectral scene, this paper attempts to combine the properties of CNN and Conditional Random Field (CRF). A mean-field approximation algorithm for CRF inference is used and formulated with Gaussian pairwise potentials as Recurrent Neural Network. This combined network is then plugged into the CNN which leads to a deep network that has robust characteristics of both CNN and CRF. Preliminary results suggest the usefulness of this framework to a promising extent.

Publication
2016 IEEE International Geoscience and Remote Sensing Symposium (IGARSS)
Fahim Irfan Alam
Fahim Irfan Alam
Associate Professor of Computer Science

My major research interests includes Computer Vision, Image Processing and Deep Learning.

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